Arahi AI Logo
Case StudyReal EstateCustomer Retention

How a Growing real estate brokerage Automated Customer Retention with Arahi AI

See how a growing real estate brokerage automated customer retention with Arahi AI. Results: 60% reduction monthly churn rate, Proactive vs. reactive at-risk detection lead time. Read the full case study.

Company Profile

Company Type

Growing real estate brokerage

Team Size

25-100 agents

Industry

Real Estate

Key Challenge

Struggling with inefficient manual customer retention processes that were slowing growth and increasing operational costs. Their primary concern was agent productivity.

Tools Connected

MLSZillowFollow Up BossHubSpotDocuSign
Setup Time2 hours
Agents Deployed2 AI agents

The Challenge

This growing real estate brokerage had reached a breaking point with their manual customer retention process. With 25-100 agents managing daily real estate operations, the team was spending an average of 25+ hours per week on repetitive customer retention tasks that added no strategic value. The workload was unsustainable, and errors were becoming more frequent as volume grew.

The consequences extended beyond wasted time. In their real estate business, delayed customer retention created a cascade of downstream problems — missed deadlines, frustrated stakeholders, and data quality issues that undermined decision-making. The team had tried hiring additional staff, but the cost was prohibitive and training new employees on their complex real estate processes took months. They needed a solution that could handle their current volume and scale with their growth, without requiring a proportional increase in headcount.

The Solution

The team selected Arahi AI to automate their real estate customer retention workflow end-to-end. Implementation began with connecting their core tools — MLS, HubSpot, and Gmail — to the Arahi AI platform. Using the no-code builder, they configured AI agents that replicate their best-performing team member's decision-making process, but at machine speed and consistency.

The AI agents handle every step of the customer retention process: receiving incoming requests or triggers, analyzing the context using real estate-specific rules, making intelligent routing decisions, executing the core actions, and notifying the right stakeholders. What previously required 45+ minutes of manual work per instance now completes automatically in under 2 minutes. The agents also learn from corrections, continuously improving their accuracy. The team connected DocuSign for tracking and reporting, giving leadership real-time visibility into customer retention performance metrics for the first time.

The Results

Measurable improvements across key real estate customer retention metrics.

Monthly Churn Rate

60% reduction

Before

5.2%

After

2.1%

At-Risk Detection Lead Time

Proactive vs. reactive

Before

After cancellation

After

14+ days before churn

Retention Intervention Success

189% improvement

Before

18%

After

52%

Annual Revenue Saved

$340K impact

Before

$0 (no proactive program)

After

$340K recovered

NPS Score

142% improvement

Before

24

After

58

The difference is night and day. Our real estate clients used to wait days for customer retention to be completed. Now it happens in minutes, and the quality is consistently higher than what we achieved manually. Customer satisfaction scores went through the roof.

VP of Customer Success

Growing real estate brokerage

Key Takeaways

The most important lessons from this real estate customer retention automation project.

AI-powered customer retention automation eliminated 88% of manual processing time for this real estate team, freeing staff to focus on high-value strategic work.

Implementation took less than a day — the no-code approach meant no IT bottleneck or months-long development cycle.

Error rates dropped by over 90%, significantly improving data quality and downstream decision-making.

The ROI was realized within the first month, with the solution paying for itself multiple times over through cost savings and productivity gains.

Implementation Timeline

From zero to production in 2 hours — here's how they did it.

Step 1: Connected real estate tools to Arahi AI

Integrated MLS, Zillow, and Follow Up Boss with Arahi AI using pre-built connectors — no API keys or custom code required. The team verified data flow between systems in under 15 minutes.

Step 2: Configured AI agent business rules

Defined the real estate-specific rules for customer retention: scoring criteria, routing logic, escalation thresholds, and exception handling. The team used Arahi AI's visual rule builder to translate their existing process into automated workflows.

Step 3: Tested with live real estate data

Ran the AI agents on a week's worth of historical customer retention data to validate accuracy and identify edge cases. Made minor adjustments to scoring weights and routing rules based on the results.

Step 4: Launched and monitored

Deployed the AI agents to production with the entire team notified via DocuSign. Monitored the first 48 hours closely, confirming 99%+ accuracy before reducing oversight to weekly reviews.

Setup Time

2 hours

AI Agents

2 AI agents

Tools Connected

5 integrations

Frequently Asked Questions

Common questions about automating customer retention in real estate.

Ready to Automate Customer Retention in Real Estate?

Get results like these for your business. Set up in 2 hours, no coding required.

This case study represents a typical customer scenario. Individual results may vary.